Skip to main content

2018 | Buch

Dynamic Markov Bridges and Market Microstructure

Theory and Applications

verfasst von: Prof. Umut Çetin, Albina Danilova

Verlag: Springer New York

Buchreihe : Probability Theory and Stochastic Modelling

insite
SUCHEN

Über dieses Buch

This book undertakes a detailed construction of Dynamic Markov Bridges using a combination of theory and real-world applications to drive home important concepts and methodologies. In Part I, theory is developed using tools from stochastic filtering, partial differential equations, Markov processes, and their interplay. Part II is devoted to the applications of the theory developed in Part I to asymmetric information models among financial agents, which include a strategic risk-neutral insider who possesses a private signal concerning the future value of the traded asset, non-strategic noise traders, and competitive risk-neutral market makers. A thorough analysis of optimality conditions for risk-neutral insiders is provided and the implications on equilibrium of non-Gaussian extensions are discussed.

A Markov bridge, first considered by Paul Lévy in the context of Brownian motion, is a mathematical system that undergoes changes in value from one state to another when the initial and final states are fixed. Markov bridges have many applications as stochastic models of real-world processes, especially within the areas of Economics and Finance. The construction of a Dynamic Markov Bridge, a useful extension of Markov bridge theory, addresses several important questions concerning how financial markets function, among them: how the presence of an insider trader impacts market efficiency; how insider trading on financial markets can be detected; how information assimilates in market prices; and the optimal pricing policy of a particular market maker.
Principles in this book will appeal to probabilists, statisticians, economists, researchers, and graduate students interested in Markov bridges and market microstructure theory.

Inhaltsverzeichnis

Frontmatter

Theory

Frontmatter
Chapter 1. Markov Processes
Abstract
Markov processes model the evolution of random phenomena whose future behaviour is independent of the past given their current state. In this section we will make this notion, i.e. Markov property, precise in a general context.
Umut Çetin, Albina Danilova
Chapter 2. Stochastic Differential Equations and Martingale Problems
Abstract
In this chapter we explore the well posedness of martingale problems of Stroock and Varadhan. The results of this chapter will be crucial for solving the filtering equations of Chap. 3. This well posedness will be obtained by establishing the relationship between solutions of martingale problems and stochastic differential equations (SDEs). Thus, our focus in this chapter will be the connection between SDEs and martingale problems. To formulate the martingale problem we first need to develop the notion of an infinitesimal generator.
Umut Çetin, Albina Danilova
Chapter 3. Stochastic Filtering
Abstract
In the second part of this book we will study an equilibrium in which market participants possess different information. Obviously, their rationality will bound them to infer the information of other players from their actions. To avoid the pathological cases this information ought to be contaminated, e.g. by noise trades. This corresponds to a stochastic filtering problem which we will formalise in this chapter.
Umut Çetin, Albina Danilova
Chapter 4. Static Markov Bridges and Enlargement of Filtrations
Abstract
In the applications considered in the second part of this book, the rational agents in equilibrium trade so as to drive the demand for the traded to a certain level at a future date.
Umut Çetin, Albina Danilova
Chapter 5. Dynamic Bridges
Abstract
In this chapter we will extend the notion of a Markov bridge to the case when the final bridge condition or the length of the bridge is not known in advance but revealed via an observation of a related process. We will call such a process dynamic Markov bridge. We provide conditions under which such a process exists as a unique solution of an SDE. This construction will be fundamental in solving the Kyle–Back models considered in the second part of the book.
Umut Çetin, Albina Danilova

Applications

Frontmatter
Chapter 6. Financial Markets with Informational Asymmetries and Equilibrium
Abstract
This chapter introduces the setup for the equilibrium models that extends, among others, the works of Kyle and Back. It also contains some key results that will be relevant for the characterisation of the equilibrium. Finally the equilibrium will be derived and discussed in Chaps. 7 and 8.
Umut Çetin, Albina Danilova
Chapter 7. Kyle—Back Model with Dynamic Information: No Default Case
Abstract
In this chapter we will illustrate how the dynamic bridge construction from Chap. 5 can be employed to solve the Kyle–Back model introduced in the previous chapter when there is no default risk.
Umut Çetin, Albina Danilova
Chapter 8. Kyle—Back Model with Default and Dynamic Information
Abstract
In this chapter we will continue applying the dynamic bridge construction from Chap. 5 to solve the Kyle–Back model in the case of dynamic information and default risk.
Umut Çetin, Albina Danilova
Backmatter
Metadaten
Titel
Dynamic Markov Bridges and Market Microstructure
verfasst von
Prof. Umut Çetin
Albina Danilova
Copyright-Jahr
2018
Verlag
Springer New York
Electronic ISBN
978-1-4939-8835-8
Print ISBN
978-1-4939-8833-4
DOI
https://doi.org/10.1007/978-1-4939-8835-8